基于HR+/HER2-乳腺癌临床数据共享平台的疾病建模及外部模型评估

IF 3 3区 医学 Q2 PHARMACOLOGY & PHARMACY
Kenta Yoshida, René Bruno, Pascal Chanu
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引用次数: 0

摘要

疾病进展的预测模型对临床试验设计和解释很有价值;然而,建立这样的模型需要合适的数据。本研究旨在利用临床试验数据共享平台Vivli提供的临床试验数据,建立激素受体阳性(HR+)/人表皮生长因子受体2阴性(HER2-)乳腺癌的肿瘤生长抑制-总生存(TGI-OS)模型。CONFIRM研究(对比fulvestrant 250和500 mg的3期研究)用于模型开发,PALOMA-3和SANDPIPER 3期研究(palbociclib和taselisib)用于外部模型鉴定。首先用TGI模型分析纵向肿瘤大小分布。TGI- os模型是一种连接TGI指标和生存结果基线预测因子的参数模型,随后使用CONFIRM研究的数据开发,并显示了成功的内部资格,包括预测两个剂量组之间的生存差异。TGI-OS模型对PALOMA-3的OS有较大的低估;然而,预测的治疗效果(OS的风险比)与两项研究的观察结果很好地吻合,这表明它有可能成为支持药物开发决策的工具。在Vivli等平台的推动下,整合来自多个来源的共享临床试验数据对于推进预测建模工作至关重要,但在将此类模型应用于新研究时,尤其是在治疗领域取得突破时,应谨慎对待。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Disease Modeling and External Model Evaluation Through Clinical Data Sharing Platform for HR+/HER2− Breast Cancer

Disease Modeling and External Model Evaluation Through Clinical Data Sharing Platform for HR+/HER2− Breast Cancer

Disease Modeling and External Model Evaluation Through Clinical Data Sharing Platform for HR+/HER2− Breast Cancer

Disease Modeling and External Model Evaluation Through Clinical Data Sharing Platform for HR+/HER2− Breast Cancer

Disease Modeling and External Model Evaluation Through Clinical Data Sharing Platform for HR+/HER2− Breast Cancer

Predictive models for disease progression are valuable for clinical trial design and interpretation; however, suitable data are needed for the development of such models. This study aimed to develop a Tumor Growth Inhibition-Overall Survival (TGI-OS) model for hormone receptor-positive (HR+)/human epidermal growth factor receptor 2 negative (HER2−) breast cancer using clinical trial data available through Vivli, a clinical trial data sharing platform. The CONFIRM study (Phase 3 study comparing fulvestrant 250 vs. 500 mg) was used for model development, and the PALOMA-3 and SANDPIPER Phase 3 studies (palbociclib and taselisib) were used for external model qualifications. Longitudinal tumor size profiles were first analyzed with the TGI model. The TGI-OS model, a parametric model linking TGI metrics and baseline predictors of survival outcomes, was then developed using data from the CONFIRM study and showed successful internal qualification, including the prediction of the survival difference between two dose groups. The TGI-OS model showed large underestimation for the OS for PALOMA-3; nevertheless, the predicted treatment effect (hazard ratio of OS) was in good agreement with the observation for both studies, suggesting its potential as a tool to support drug development decisions. While integrating shared clinical trial data from multiple sources, facilitated by platforms like Vivli, is crucial for advancing predictive modeling efforts, caution should be exercised when such models are applied for new studies, especially when there are breakthroughs in the treatment landscape.

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来源期刊
CiteScore
5.00
自引率
11.40%
发文量
146
审稿时长
8 weeks
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